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An Efficient Near-Field Localization Method of Coherently Distributed Strictly Non-circular Signals

机译:一种有效的近场定位方法即严格地分布严格的非圆形信号

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摘要

For the near-field localization of non-circular distributed signals with spacial probability density functions (PDF), a novel algorithm is proposed in this paper. The traditional algorithms dealing with the distributed source are only for the far-field sources, and they need two-dimensional (2D) search or omit the angular spread parameter. As a result, these algorithms are no longer inapplicable for near-filed localization. Hence the near-filed sources that obey a classical probability distribution are studied and the corresponding specific expressions are given, providing merits for the near-field signal localization. Additionally, non-circularity of the incident signal is taken into account in order to improve the estimation accuracy. For the steering vector of spatially distributed signals, we first give an approximate expression in a non-integral form, and it provides the possibility of separating the parameters to be estimated from the spatially discrete parameters of the signal. Next, based on the rank-reduced (RARE) algorithm, direction of arrival (DOA) and range can be obtained through two one-dimensional (1-D) searches separately, and thus the computational complexity of the proposed algorithm is reduced significantly, and improvements to estimation accuracy and identifiability are achieved, compared with other existing algorithms. Finally, the effectiveness of the algorithm is verified by simulation.
机译:对于具有空间概率密度函数(PDF)的非圆形分布信号的近场定位,本文提出了一种新的算法。处理分布式源的传统算法仅适用于远场源,并且它们需要二维(2D)搜索或省略角扩展参数。结果,这些算法不再适用于近摄的定位。因此,研究了遵守经典概率分布的接近归档源,并给出了相应的特定表达,为近场信号定位提供了优点。另外,考虑了入射信号的非圆形度,以提高估计精度。对于空间分布信号的转向向量,我们首先以非积分形式提供近似的表达式,并且它提供了将要从信号的空间离散参数估计的参数分离的可能性。接下来,基于秩减少(稀有)算法,到达方向(DOA)和范围可以通过两个一维(1-D)单独搜索来获得,因此提出算法的计算复杂性显着减少,与其他现有算法相比,实现了估计精度和可识别性的改进。最后,通过模拟验证了算法的有效性。

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